YoVDO

Differentiable Point Cloud Rasterisation in Julia

Offered By: The Julia Programming Language via YouTube

Tags

Julia Courses Computer Vision Courses Computer Graphics Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore differentiable point cloud rasterization in this 10-minute conference talk from JuliaCon 2024. Dive into the capabilities of DiffPointRasterisation.jl, a Julia package focused on rasterizing volumetric 3D point cloud data to 3D voxel grids or 2D images. Learn about the package's fast implementations for forward rendering and backward gradient calculation processes on both CPU and GPU. Discover how it integrates with ChainRules.jl for automatic differentiation and provides explicit functions for allocation-free calculations. Gain insights into its application in tomographic reconstruction from cryo-electron microscopy data and understand its place within Julia's differentiable computing ecosystem.

Syllabus

Differentiable point cloud rasterisation | Feldmeier | JuliaCon 2024


Taught by

The Julia Programming Language

Related Courses

Computational Photography
Georgia Institute of Technology via Coursera
Computer Graphics
University of California, San Diego via edX
Interactive 3D Graphics
Autodesk via Udacity
Introducción a la Programación para Ciencias e Ingeniería
Universidad Politécnica de Madrid via Miríadax
Interactive Computer Graphics
University of Tokyo via Coursera